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<div id="content-root"><div><div class="top-section"><div class="wrapper"><div class="restop-title-row"><h1><a class="title-user" href="https://www.tinymind.com/evolution23">evolution23</a><svg class="svg-inline--fa fa-angle-right fa-w-6 fa-fw" aria-hidden="true" data-prefix="fa" data-icon="angle-right" role="img" xmlns="http://www.w3.org/2000/svg" viewBox="0 0 192 512"><path fill="currentColor" d="M187.8 264.5L41 412.5c-4.7 4.7-12.3 4.7-17 0L4.2 392.7c-4.7-4.7-4.7-12.3 0-17L122.7 256 4.2 136.3c-4.7-4.7-4.7-12.3 0-17L24 99.5c4.7-4.7 12.3-4.7 17 0l146.8 148c4.7 4.7 4.7 12.3 0 17z"></path></svg><!-- <i class="fa fa-fw fa-angle-right"></i> --><a class="title-user" href="https://www.tinymind.com/evolution23/w7-work">w7-work</a><svg class="svg-inline--fa fa-angle-right fa-w-6 fa-fw" aria-hidden="true" data-prefix="fa" data-icon="angle-right" role="img" xmlns="http://www.w3.org/2000/svg" viewBox="0 0 192 512"><path fill="currentColor" d="M187.8 264.5L41 412.5c-4.7 4.7-12.3 4.7-17 0L4.2 392.7c-4.7-4.7-4.7-12.3 0-17L122.7 256 4.2 136.3c-4.7-4.7-4.7-12.3 0-17L24 99.5c4.7-4.7 12.3-4.7 17 0l146.8 148c4.7 4.7 4.7 12.3 0 17z"></path></svg><!-- <i class="fa fa-fw fa-angle-right"></i> --><span class="title-name"><span>Exec #17</span><span class="edit-desc"><svg class="svg-inline--fa fa-pencil fa-w-16 fa-fw" aria-hidden="true" data-prefix="fa" data-icon="pencil" role="img" xmlns="http://www.w3.org/2000/svg" viewBox="0 0 512 512"><path fill="currentColor" d="M491.609 73.625l-53.861-53.839c-26.378-26.379-69.076-26.383-95.46-.001L24.91 335.089.329 484.085c-2.675 16.215 11.368 30.261 27.587 27.587l148.995-24.582 315.326-317.378c26.33-26.331 26.581-68.879-.628-96.087zM120.644 302l170.259-169.155 88.251 88.251L210 391.355V350h-48v-48h-41.356zM82.132 458.132l-28.263-28.263 12.14-73.587L84.409 338H126v48h48v41.59l-18.282 18.401-73.586 12.141zm378.985-319.533l-.051.051-.051.051-48.03 48.344-88.03-88.03 48.344-48.03.05-.05.05-.05c9.147-9.146 23.978-9.259 33.236-.001l53.854 53.854c9.878 9.877 9.939 24.549.628 33.861z"></path></svg><!-- <i class="fa fa-fw fa-pencil"></i> --></span></span></h1></div><ul><li class="a active" data-key="overview"><svg class="svg-inline--fa fa-info fa-w-16 fa-fw" aria-hidden="true" data-prefix="fa" data-icon="info" role="img" xmlns="http://www.w3.org/2000/svg" viewBox="0 0 512 512"><path fill="currentColor" d="M256 8C119.043 8 8 119.083 8 256c0 136.997 111.043 248 248 248s248-111.003 248-248C504 119.083 392.957 8 256 8zm0 448c-110.532 0-200-89.431-200-200 0-110.495 89.472-200 200-200 110.491 0 200 89.471 200 200 0 110.53-89.431 200-200 200zm0-338c23.196 0 42 18.804 42 42s-18.804 42-42 42-42-18.804-42-42 18.804-42 42-42zm56 254c0 6.627-5.373 12-12 12h-88c-6.627 0-12-5.373-12-12v-24c0-6.627 5.373-12 12-12h12v-64h-12c-6.627 0-12-5.373-12-12v-24c0-6.627 5.373-12 12-12h64c6.627 0 12 5.373 12 12v100h12c6.627 0 12 5.373 12 12v24z"></path></svg><!-- <i class="fa fa-fw fa-info"></i> --><span class="tab-title">概览</span></li><li class="a" data-key="charts"><svg class="svg-inline--fa fa-chart-bar fa-w-16 fa-fw" aria-hidden="true" data-prefix="fa" data-icon="chart-bar" role="img" xmlns="http://www.w3.org/2000/svg" viewBox="0 0 512 512"><path fill="currentColor" d="M500 400c6.6 0 12 5.4 12 12v24c0 6.6-5.4 12-12 12H12c-6.6 0-12-5.4-12-12V76c0-6.6 5.4-12 12-12h24c6.6 0 12 5.4 12 12v324h452zm-356-60v-72c0-6.6-5.4-12-12-12h-24c-6.6 0-12 5.4-12 12v72c0 6.6 5.4 12 12 12h24c6.6 0 12-5.4 12-12zm96 0V140c0-6.6-5.4-12-12-12h-24c-6.6 0-12 5.4-12 12v200c0 6.6 5.4 12 12 12h24c6.6 0 12-5.4 12-12zm96 0V204c0-6.6-5.4-12-12-12h-24c-6.6 0-12 5.4-12 12v136c0 6.6 5.4 12 12 12h24c6.6 0 12-5.4 12-12zm96 0V108c0-6.6-5.4-12-12-12h-24c-6.6 0-12 5.4-12 12v232c0 6.6 5.4 12 12 12h24c6.6 0 12-5.4 12-12z"></path></svg><!-- <i class="fa fa-fw fa-chart-bar"></i> --><span class="tab-title">图表</span></li><li class="a" data-key="code"><svg class="svg-inline--fa fa-code fa-w-16 fa-fw" aria-hidden="true" data-prefix="fa" data-icon="code" role="img" xmlns="http://www.w3.org/2000/svg" viewBox="0 0 20 20"><path fill="currentColor" d="M6 6c0-0.55-0.45-1-1-1C4.72 5 4.47 5.11 4.29 5.29l-4 4C0.11 9.47 0 9.72 0 10c0 0.28 0.11 0.53 0.29 0.71l4 4C4.47 14.89 4.72 15 5 15c0.55 0 1-0.45 1-1c0-0.28-0.11-0.53-0.29-0.71L2.41 10l3.29-3.29C5.89 6.53 6 6.28 6 6z M12 2c-0.46 0-0.83 0.31-0.95 0.73l-4 14C7.03 16.82 7 16.9 7 17c0 0.55 0.45 1 1 1c0.46 0 0.83-0.31 0.95-0.73l4-14C12.97 3.18 13 3.1 13 3C13 2.45 12.55 2 12 2z M19.71 9.29l-4-4C15.53 5.11 15.28 5 15 5c-0.55 0-1 0.45-1 1c0 0.28 0.11 0.53 0.29 0.71L17.59 10l-3.29 3.29C14.11 13.47 14 13.72 14 14c0 0.55 0.45 1 1 1c0.28 0 0.53-0.11 0.71-0.29l4-4C19.89 10.53 20 10.28 20 10C20 9.72 19.89 9.47 19.71 9.29z"></path></svg><!-- <i class="fa fa-fw fa-code"></i> --><span class="tab-title">代码</span></li><li class="a" data-key="output"><svg class="svg-inline--fa fa-truck fa-w-20 fa-fw" aria-hidden="true" data-prefix="fa" data-icon="truck" role="img" xmlns="http://www.w3.org/2000/svg" viewBox="0 0 640 512"><path fill="currentColor" d="M592 0H272c-26.51 0-48 21.49-48 48v48h-44.118a48 48 0 0 0-33.941 14.059l-99.882 99.882A48 48 0 0 0 32 243.882V368H20c-6.627 0-12 5.373-12 12v24c0 6.627 5.373 12 12 12h44c0 53.019 42.981 96 96 96s96-42.981 96-96h128c0 53.019 42.981 96 96 96s96-42.981 96-96h16c26.51 0 48-21.49 48-48V48c0-26.51-21.49-48-48-48zM160 464c-26.467 0-48-21.533-48-48s21.533-48 48-48 48 21.533 48 48-21.533 48-48 48zm64-119.547C207.015 329.249 184.589 320 160 320c-33.395 0-62.802 17.055-80 42.926V243.882L179.882 144H224v200.453zM480 464c-26.467 0-48-21.533-48-48s21.533-48 48-48 48 21.533 48 48-21.533 48-48 48zm112-96h-28.846c-16.599-28.694-47.621-48-83.154-48s-66.555 19.306-83.154 48H272V48h320v320zM112 256l80-80v80h-80z"></path></svg><!-- <i class="fa fa-fw fa-truck"></i> --><span class="tab-title">输出</span></li><li class="a" data-key="settings"><svg class="svg-inline--fa fa-cog fa-w-16 fa-fw" aria-hidden="true" data-prefix="fa" data-icon="cog" role="img" xmlns="http://www.w3.org/2000/svg" viewBox="0 0 512 512"><path fill="currentColor" d="M452.515 237l31.843-18.382c9.426-5.441 13.996-16.542 11.177-27.054-11.404-42.531-33.842-80.547-64.058-110.797-7.68-7.688-19.575-9.246-28.985-3.811l-31.785 18.358a196.276 196.276 0 0 0-32.899-19.02V39.541a24.016 24.016 0 0 0-17.842-23.206c-41.761-11.107-86.117-11.121-127.93-.001-10.519 2.798-17.844 12.321-17.844 23.206v36.753a196.276 196.276 0 0 0-32.899 19.02l-31.785-18.358c-9.41-5.435-21.305-3.877-28.985 3.811-30.216 30.25-52.654 68.265-64.058 110.797-2.819 10.512 1.751 21.613 11.177 27.054L59.485 237a197.715 197.715 0 0 0 0 37.999l-31.843 18.382c-9.426 5.441-13.996 16.542-11.177 27.054 11.404 42.531 33.842 80.547 64.058 110.797 7.68 7.688 19.575 9.246 28.985 3.811l31.785-18.358a196.202 196.202 0 0 0 32.899 19.019v36.753a24.016 24.016 0 0 0 17.842 23.206c41.761 11.107 86.117 11.122 127.93.001 10.519-2.798 17.844-12.321 17.844-23.206v-36.753a196.34 196.34 0 0 0 32.899-19.019l31.785 18.358c9.41 5.435 21.305 3.877 28.985-3.811 30.216-30.25 52.654-68.266 64.058-110.797 2.819-10.512-1.751-21.613-11.177-27.054L452.515 275c1.22-12.65 1.22-25.35 0-38zm-52.679 63.019l43.819 25.289a200.138 200.138 0 0 1-33.849 58.528l-43.829-25.309c-31.984 27.397-36.659 30.077-76.168 44.029v50.599a200.917 200.917 0 0 1-67.618 0v-50.599c-39.504-13.95-44.196-16.642-76.168-44.029l-43.829 25.309a200.15 200.15 0 0 1-33.849-58.528l43.819-25.289c-7.63-41.299-7.634-46.719 0-88.038l-43.819-25.289c7.85-21.229 19.31-41.049 33.849-58.529l43.829 25.309c31.984-27.397 36.66-30.078 76.168-44.029V58.845a200.917 200.917 0 0 1 67.618 0v50.599c39.504 13.95 44.196 16.642 76.168 44.029l43.829-25.309a200.143 200.143 0 0 1 33.849 58.529l-43.819 25.289c7.631 41.3 7.634 46.718 0 88.037zM256 160c-52.935 0-96 43.065-96 96s43.065 96 96 96 96-43.065 96-96-43.065-96-96-96zm0 144c-26.468 0-48-21.532-48-48 0-26.467 21.532-48 48-48s48 21.533 48 48c0 26.468-21.532 48-48 48z"></path></svg><!-- <i class="fa fa-fw fa-cog"></i> --><span class="tab-title">设置</span></li></ul></div></div><div class="main-section"><div><div class="wrapper mainside overview-tab"><div class="sidebar"><div class="card"><div class="section-header"><h4>概览</h4></div><div class="section"><div><span class="meta-label">状态</span><span class="meta-value status succeeded">成功</span></div><div><span class="meta-label">由</span><span class="meta-value"><a href="https://www.tinymind.com/evolution23">evolution23</a></span></div><div><span class="meta-label">开始于</span><span class="meta-value">1 小时前</span></div><div><span class="meta-label">时长</span><span class="meta-value">1 小时</span></div><div><span class="meta-label">资源</span><span class="meta-value">CPU 4</span></div></div><div class="section env-section"><h5>环境</h5><div class="env-entry"><div class="env-label" style="color: rgb(53, 114, 165);"><div class="env-dot" style="background-color: rgb(53, 114, 165);"></div>Python 3.6</div></div><div class="env-entry"><div class="env-label" style="color: rgb(239, 108, 0);"><div class="env-dot" style="background-color: rgb(239, 108, 0);"></div>TensorFlow 1.4</div></div></div><div class="section"><h5>事件</h5><div class="event-row"><svg class="svg-inline--fa fa-plus-circle fa-w-16 fa-fw created" aria-hidden="true" data-prefix="fa" data-icon="plus-circle" role="img" xmlns="http://www.w3.org/2000/svg" viewBox="0 0 512 512"><path fill="currentColor" d="M384 240v32c0 6.6-5.4 12-12 12h-88v88c0 6.6-5.4 12-12 12h-32c-6.6 0-12-5.4-12-12v-88h-88c-6.6 0-12-5.4-12-12v-32c0-6.6 5.4-12 12-12h88v-88c0-6.6 5.4-12 12-12h32c6.6 0 12 5.4 12 12v88h88c6.6 0 12 5.4 12 12zm120 16c0 137-111 248-248 248S8 393 8 256 119 8 256 8s248 111 248 248zm-48 0c0-110.5-89.5-200-200-200S56 145.5 56 256s89.5 200 200 200 200-89.5 200-200z"></path></svg><!-- <i class="fa fa-fw fa-plus-circle created"></i> --><div class="event-content"><div class="event-ts">8:21 晚上, 1月 19</div><div class="event-name created">已创建</div></div></div><div class="event-row"><svg class="svg-inline--fa fa-rocket fa-w-16 fa-fw starting" aria-hidden="true" data-prefix="fa" data-icon="rocket" role="img" xmlns="http://www.w3.org/2000/svg" viewBox="0 0 512 512"><path fill="currentColor" d="M512 112c0-36.8-.8-47.2-11-89.1-1.4-5.8-5.9-10.3-11.7-11.8C451.4 1.8 440 0 400 0c-68.3 0-127.4 39.5-177 96H96c-15.2 0-29 8.6-35.8 22.1l-56 112C-9 256.7 10.3 288 40.1 288h66.3c-6.7 15-12.9 29.8-18.6 44.1-2.4 5.9-1 12.7 3.6 17.2l71.3 71.3c4.5 4.5 11.3 5.9 17.2 3.6 14.3-5.7 29.1-11.9 44.1-18.6v66.3c0 29.7 31.3 49.1 57.9 35.8l112-56c13.6-6.8 22.1-20.6 22.1-35.8V289c56.5-49.6 96-108.7 96-177zM53 240l48-96h84.7c-21.1 30.3-39.9 63.1-56.6 96H53zm87.1 90.2C196.8 191.1 293 48 400.1 48c22.6 0 34.7 0 58.8 5.2 5.1 24 5.1 36.2 5.1 58.8 0 107.1-143.1 203.2-282.2 259.9l-41.7-41.7zM368 411l-96 48v-76.2c32.9-16.6 65.7-35.5 96-56.6V411zm0-315c26.5 0 48 21.5 48 48s-21.5 48-48 48-48-21.5-48-48 21.5-48 48-48z"></path></svg><!-- <i class="fa fa-fw fa-rocket starting"></i> --><div class="event-content"><div class="event-ts">8:21 晚上, 1月 19</div><div class="event-name starting">启动中</div></div></div><div class="event-row"><svg class="svg-inline--fa fa-industry fa-w-16 fa-fw building" aria-hidden="true" data-prefix="fa" data-icon="industry" role="img" xmlns="http://www.w3.org/2000/svg" viewBox="0 0 512 512"><path fill="currentColor" d="M475.115 131.752L336 220.28V152c0-18.916-20.931-30.399-36.885-20.248L160 220.28V56c0-13.255-10.745-24-24-24H24C10.745 32 0 42.745 0 56v400c0 13.255 10.745 24 24 24h464c13.255 0 24-10.745 24-24V152c0-18.917-20.931-30.399-36.885-20.248zM464 432H48V80h64v184c0 18.916 20.931 30.399 36.885 20.248L288 195.72V264c0 18.915 20.931 30.399 36.885 20.248L464 195.72V432zm-60-48h-40c-6.627 0-12-5.373-12-12v-40c0-6.627 5.373-12 12-12h40c6.627 0 12 5.373 12 12v40c0 6.627-5.373 12-12 12zm-128 0h-40c-6.627 0-12-5.373-12-12v-40c0-6.627 5.373-12 12-12h40c6.627 0 12 5.373 12 12v40c0 6.627-5.373 12-12 12zm-128 0h-40c-6.627 0-12-5.373-12-12v-40c0-6.627 5.373-12 12-12h40c6.627 0 12 5.373 12 12v40c0 6.627-5.373 12-12 12z"></path></svg><!-- <i class="fa fa-fw fa-industry building"></i> --><div class="event-content"><div class="event-ts">8:21 晚上, 1月 19</div><div class="event-name building">配置环境</div></div></div><div class="event-row"><svg class="svg-inline--fa fa-running fa-w-16 fa-fw running" aria-hidden="true" data-prefix="fa" data-icon="running" role="img" xmlns="http://www.w3.org/2000/svg" viewBox="0 0 24 24"><path fill="currentColor" d="M21,11 C20.45,11 20,11.45 20,12 C20,16.42 16.42,20 12,20 C9.48,20 7.24,18.82 5.78,17 L7,17 C7.55,17 8,16.55 8,16 C8,15.45 7.55,15 7,15 L3,15 C2.45,15 2,15.45 2,16 L2,20 C2,20.55 2.45,21 3,21 C3.55,21 4,20.55 4,20 L4,17.94 C5.82,20.39 8.71,22 12,22 C17.52,22 22,17.52 22,12 C22,11.45 21.55,11 21,11 M21,3 C20.45,3 20,3.45 20,4 L20,6.06 C18.18,3.61 15.29,2 12,2 C6.48,2 2,6.48 2,12 C2,12.55 2.45,13 3,13 C3.55,13 4,12.55 4,12 C4,7.58 7.58,4 12,4 C14.52,4 16.76,5.18 18.22,7 L17,7 C16.45,7 16,7.45 16,8 C16,8.55 16.45,9 17,9 L21,9 C21.55,9 22,8.55 22,8 L22,4 C22,3.45 21.55,3 21,3"></path></svg><!-- <i class="fa fa-fw fa-running running"></i> --><div class="event-content"><div class="event-ts">8:21 晚上, 1月 19</div><div class="event-name running">运行中</div></div></div><div class="event-row"><svg class="svg-inline--fa fa-save fa-w-14 fa-fw saving" aria-hidden="true" data-prefix="fa" data-icon="save" role="img" xmlns="http://www.w3.org/2000/svg" viewBox="0 0 448 512"><path fill="currentColor" d="M433.941 129.941l-83.882-83.882A48 48 0 0 0 316.118 32H48C21.49 32 0 53.49 0 80v352c0 26.51 21.49 48 48 48h352c26.51 0 48-21.49 48-48V163.882a48 48 0 0 0-14.059-33.941zM272 80v80H144V80h128zm122 352H54a6 6 0 0 1-6-6V86a6 6 0 0 1 6-6h42v104c0 13.255 10.745 24 24 24h176c13.255 0 24-10.745 24-24V83.882l78.243 78.243a6 6 0 0 1 1.757 4.243V426a6 6 0 0 1-6 6zM224 232c-48.523 0-88 39.477-88 88s39.477 88 88 88 88-39.477 88-88-39.477-88-88-88zm0 128c-22.056 0-40-17.944-40-40s17.944-40 40-40 40 17.944 40 40-17.944 40-40 40z"></path></svg><!-- <i class="fa fa-fw fa-save saving"></i> --><div class="event-content"><div class="event-ts">9:10 晚上, 1月 19</div><div class="event-name saving">保存中</div></div></div><div class="event-row"><svg class="svg-inline--fa fa-check-circle fa-w-16 fa-fw succeeded" aria-hidden="true" data-prefix="fa" data-icon="check-circle" role="img" xmlns="http://www.w3.org/2000/svg" viewBox="0 0 512 512"><path fill="currentColor" d="M256 8C119.033 8 8 119.033 8 256s111.033 248 248 248 248-111.033 248-248S392.967 8 256 8zm0 48c110.532 0 200 89.451 200 200 0 110.532-89.451 200-200 200-110.532 0-200-89.451-200-200 0-110.532 89.451-200 200-200m140.204 130.267l-22.536-22.718c-4.667-4.705-12.265-4.736-16.97-.068L215.346 303.697l-59.792-60.277c-4.667-4.705-12.265-4.736-16.97-.069l-22.719 22.536c-4.705 4.667-4.736 12.265-.068 16.971l90.781 91.516c4.667 4.705 12.265 4.736 16.97.068l172.589-171.204c4.704-4.668 4.734-12.266.067-16.971z"></path></svg><!-- <i class="fa fa-fw fa-check-circle succeeded"></i> --><div class="event-content"><div class="event-ts">9:10 晚上, 1月 19</div><div class="event-name succeeded">成功</div></div></div></div></div></div><div class="main main-left"><h3>参数</h3><div class="params"><div class="param-section"><div class="param-group"><div class="param param-display"><code class="param-name">output_dir</code><div class="param-value">/output</div></div></div></div></div><hr><div><div class="section-header"><h3>日志</h3></div><div class="secondary">当前显示输出日志 (stdout). <span></span><span class="a">显示错误日志 (stderr)</span></div><pre>Successfully downloaded train-images-idx3-ubyte.gz 9912422 bytes.
Extracting /tmp/tensorflow/mnist/input_data/train-images-idx3-ubyte.gz
Successfully downloaded train-labels-idx1-ubyte.gz 28881 bytes.
Extracting /tmp/tensorflow/mnist/input_data/train-labels-idx1-ubyte.gz
Successfully downloaded t10k-images-idx3-ubyte.gz 1648877 bytes.
Extracting /tmp/tensorflow/mnist/input_data/t10k-images-idx3-ubyte.gz
Successfully downloaded t10k-labels-idx1-ubyte.gz 4542 bytes.
Extracting /tmp/tensorflow/mnist/input_data/t10k-labels-idx1-ubyte.gz
test accuracy: 0.9638 , learning_rate: 0.1
test accuracy: 0.9727 , learning_rate: 0.08
test accuracy: 0.9782 , learning_rate: 0.064
test accuracy: 0.98 , learning_rate: 0.0512
test accuracy: 0.9827 , learning_rate: 0.04096
test accuracy: 0.9835 , learning_rate: 0.032768
test accuracy: 0.9831 , learning_rate: 0.0262144
test accuracy: 0.9845 , learning_rate: 0.0209715
test accuracy: 0.9848 , learning_rate: 0.0167772
test accuracy: 0.9838 , learning_rate: 0.0134218
test accuracy: 0.9857 , learning_rate: 0.0107374
test accuracy: 0.9846 , learning_rate: 0.00858993
test accuracy: 0.9849 , learning_rate: 0.00687195
test accuracy: 0.9846 , learning_rate: 0.00549756
test accuracy: 0.9849 , learning_rate: 0.00439805
test accuracy: 0.9842 , learning_rate: 0.00351844
test accuracy: 0.9842 , learning_rate: 0.00281475
test accuracy: 0.9857 , learning_rate: 0.0022518
test accuracy: 0.9862 , learning_rate: 0.00180144
test accuracy: 0.9857 , learning_rate: 0.00144115
test accuracy: 0.9851 , learning_rate: 0.00115292
test accuracy: 0.9853 , learning_rate: 0.000922337
test accuracy: 0.9843 , learning_rate: 0.00073787
test accuracy: 0.9844 , learning_rate: 0.000590296
test accuracy: 0.9861 , learning_rate: 0.000472237
test accuracy: 0.9873 , learning_rate: 0.000377789
test accuracy: 0.9864 , learning_rate: 0.000302231
test accuracy: 0.9868 , learning_rate: 0.000241785
test accuracy: 0.9849 , learning_rate: 0.000193428
test accuracy: 0.9869 , learning_rate: 0.000154743
test accuracy: 0.986 , learning_rate: 0.000123794
</pre></div></div></div></div></div></div></div>
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